library(tidyverse)library(DT) # for interactive html tables on websitelibrary(flextable) # best for exporting to word or PDF files.knitr::opts_chunk$set(warning =FALSE, message =FALSE)set_flextable_defaults(theme_fun = theme_vanilla, padding =2,line_spacing =1,big.mark =",", )options(DT.options =list())FitFlextableToPage <-function(ft, pgwidth =6){ ft_out <- ft %>%autofit() ft_out <-width(ft_out, width =dim(ft_out)$widths*pgwidth /(flextable_dim(ft_out)$widths))return(ft_out)}
Code
# all pins for 2022ptax_pins <-read_csv("../Output/Dont_Upload/0_joined_PIN_data_2022.csv") %>%mutate(class =as.numeric(class)) %>%# Allows for joining laterselect(-c(propclass_1dig:av.y))# Workaround for identifying more project IDs. # Used Appeal ID to create unique identifier to group PINs.bor <-read_csv("../Output/borappeals.csv") %>%mutate(project_appellant =paste(project_id, sep ="-", appellant))# modelsummary::datasummary_skim(bor)# Cleaned PIN-Project list after cleaning the commercial valuatoin dataset found online. # Another temporary work-around until we (maybe) have full keypin list:proj_xwalk <-read_csv("../Output/all_keypins.csv") # all commercial valuation properties but made with not-quite-clean data from commercial valuation dataset on Cook County Data Portal (which was made from combining the Methodology worksheets) # Values are also only the FIRST PASS assessments and do not include appeals or changes in values# Join project IDs to PINs:ptax_pins <- ptax_pins %>%left_join(proj_xwalk)nicknames <- readxl::read_excel("../Necessary_Files/muni_shortnames.xlsx")# create tc_muninames from helper file:# source("../scripts/helper_tc_muninames_2022.R")#tc_muninames <- tc_muninames %>% select(-year)# add muni names by joining tax code info:# ptax_pins <- ptax_pins %>% # mutate(tax_code_num = as.character(tax_code_num)) %>%# left_join(tc_muninames)# original class_dict variables already in 0_joined data# but I do want the new-ish variables I created to be brought in:class_dict <-read_csv("../Necessary_Files/class_dict_expanded.csv") %>%select(class_code, comparable_props, Alea_cat, incent_prop)cross_county_lines <-c("030440000", "030585000", "030890000", "030320000", "031280000","030080000", "030560000", "031120000", "030280000", "030340000","030150000","030050000", "030180000","030500000", "031210000")ptax_pins <- ptax_pins %>%left_join(class_dict, by =c("class"="class_code")) %>%mutate(clean_name =ifelse(is.na(clean_name), "Unincorporated", clean_name)) %>%filter(!agency_num %in% cross_county_lines)# BOR data source shortfall: We only have the data if they appeal!bor_pins <- bor %>%group_by(pin) %>%arrange(desc(tax_year)) %>%summarize(pin =first(pin), # grabs first occurrence of unique PINclass_bor =list(unique(class)),appellant =first(appellant),project_id =first(project_id), timesappealed =n() ) %>%mutate(proj_appellant =paste(project_id, "-", appellant))ptax_pins <- ptax_pins %>%left_join(bor_pins, by ="pin")# now do it the other way and compareptax_pins <- ptax_pins %>%mutate( both_ids = project_id,both_ids =ifelse(is.na(both_ids), keypin, both_ids),both_ids =ifelse(is.na(both_ids) &between(class, 300, 899), pin, both_ids))eq2022 <-2.9237#example of eq factor proliferationincentive_majorclasses <-c("6", "7A", "7B", "8A", "8B")commercial_classes <-c(401:435, 490, 491, 492, 496:499,500:535,590, 591, 592, 597:599, 700:799,800:835, 891, 892, 897, 899) industrial_classes <-c(480:489,493, 550:589, 593,600:699,850:890, 893 )ptax_pins <- ptax_pins %>%mutate(class_1dig =str_sub(class, 1,1),class_group =case_when( (class_1dig ==5& class %in% commercial_classes) ~"5A", (class_1dig ==5& class %in% industrial_classes) ~"5B", class_1dig ==7& class <742~"7A", class_1dig ==7& class >=742~"7B", (class_1dig ==8& class %in% commercial_classes ) ~"8A", (class_1dig ==8& class %in% industrial_classes ) ~"8B",TRUE~as.character(class_1dig))) %>%mutate(# taxing district revenue = taxable eav * tax rate so rearrange the formula:taxed_eav = final_tax_to_dist / tax_code_rate*100,total_value_eav = (final_tax_to_dist + final_tax_to_tif)/ tax_code_rate *100+ all_exemptions + abatements,exempt_eav_inTIF =ifelse(in_tif ==1, all_exemptions, 0),exempt_eav = all_exemptions + abatements,taxed_av = taxed_eav / eq2022, # current value that taxing agencies can tax for their levies## taxable AV = equalized assessed value net TIF increments, gross exemptions. ## Used for calculating untaxable value further below# taxable_av = (final_tax_to_dist / tax_code_rate *100 + all_exemptions + abatements)/ eq2022, # taxable_eav_fromincents = ifelse(class >=600 & class < 900, taxable_av * eq2022, 0),## untaxable value = exempt EAV from abatements and exemptions + TIF incrementuntaxable_value_eav = all_exemptions + abatements +## TIF increment EAV above frozen EAV, which becomes TIF revenue (final_tax_to_tif / tax_code_rate*100) +## difference between 25% and reduced level of assessment for incentive class properties. Excludes TIF increment when calculating the difference! ifelse(between(class, 600, 899), (taxed_av/loa*0.25- taxed_av)*eq2022, 0),untaxable_incent_eav =ifelse(between(class, 600, 899), (taxed_av/loa*0.25- taxed_av)*eq2022, 0),# manually adjust untaxable value of class 239 propertiesuntaxable_value_eav =ifelse(class ==239, equalized_av-taxed_eav, untaxable_value_eav), untaxable_value_av = untaxable_value_eav / eq2022,untaxable_value_fmv = untaxable_value_av / loa,exempt_fmv = exempt_eav / eq2022 / loa, fmv_inTIF =ifelse(in_tif==1, av/loa, 0),fmv_tif_increment =ifelse(final_tax_to_tif >0, ((final_tax_to_tif / (tax_code_rate/100)) / eq2022 ) / loa, 0),fmv_incents_inTIF =ifelse(between(class, 600, 899) & in_tif ==1, fmv, 0),fmv_incents_tif_increment =ifelse(between(class, 600, 899) & final_tax_to_tif >0 , ((final_tax_to_tif / (tax_code_rate/100)) / eq2022 ) / loa, 0),naive_rev_forgone = untaxable_incent_eav * tax_code_rate/100) %>%select(tax_code, class, pin, fmv, untaxable_value_fmv, fmv_inTIF, fmv_tif_increment, fmv, total_billed, final_tax_to_dist, final_tax_to_tif, tax_code_rate, eav, equalized_av, av, everything())
Total Value should equal Current Taxable Value + non-Taxable Value where non-Taxable Value = Value in TIF Increment + Reduced Value from Policy Choices where Reduced Value = Tax Exempt Value from Homeowners exemptions or abatements + Reduced Taxable Value from lower levels of assessments due to incentive classifications.
\[\mbox{Total Value = Taxed Value + Untaxable Value}\]
where
\[\mbox{Untaxable Value = TIF Increment + Exemptions + Abatements
+ Reduced Taxable Value from Lower Incentive Class Assessment Ratios}\]
where
\[\mbox{Reduced Taxable Value from Incentive Classification Levels of Assessments}\]\[\mbox{which then equals } {0.25 \ast EAV - \approx0.10 \ast EAV}\]
4 Cook County Total Value
\[
\mbox{AV = Fair Market Value * Level of Assessment}
\]
Taxed Value refers to what taxing agencies did tax to pay for their levies. We use the portion of the tax bill that does NOT go to TIFs to calculate the portion of the composite levy paid by each PIN and then sum up from there.
\[
\mbox{Final Tax to District} = \mbox{Portion of Levy Paid by PIN} = {\mbox{Tax Code Rate}}*{\mbox{Taxable Value of PIN}}
\]
\[\mbox{Equalized Assessed Value} = {\frac{\mbox{final tax to dist + final tax to TIF}}{\mbox{tax code rate}} + \mbox{Exemptions + Abatements}}\]
Table 4.1: FMV of PINs in Cook County Taxed FMV represents the property value that was actually taxed by local taxing jurisdictions(equal to the amount levied) but converted to FMV. We use the the portion of an individuals tax bill that does NOT go to a TIF to calculate the composite levy for taxing jursidictions.
Code
table_cook %>%select(cty_fmv_comandind, #cty_fmv, cty_pct_fmv_both_incent, cty_pct_fmv_incentinTIF, cty_pct_PC_both_incent, cty_PC_comandind, cty_PC_incent_inTIF, cty_pct_PC_both_incent_inTIF, cty_pct_fmv_incents_tif_increment) %>%mutate(across(contains("pct_"), scales::percent, accuracy = .01)) %>%flextable() %>%align(align ="right") %>%set_header_labels(cty_fmv_comandind ='Com. & Ind. FMV',# cty_fmv = 'Total FMV in Cook',cty_pct_fmv_both_incent ='% of Com. & Ind. FMV w/ Incent.',cty_pct_fmv_incentinTIF ='% of Com. & Ind. FMV w/ Incent. in TIF',cty_pct_fmv_incents_tif_increment ='% of Com. & Ind. FMV in TIF Increment',cty_PC_comandind ='PIN Count',cty_PC_incent_inTIF ="Incent. PINs in TIF",cty_pct_PC_both_incent ='% of Com. & Ind. PINs w/ Incent.',cty_pct_PC_both_incent_inTIF ='% of Incent. PINs in TIF' ) %>%FitFlextableToPage()
Com. & Ind. FMV
% of Com. & Ind. FMV w/ Incent.
% of Com. & Ind. FMV w/ Incent. in TIF
% of Com. & Ind. PINs w/ Incent.
PIN Count
Incent. PINs in TIF
% of Incent. PINs in TIF
% of Com. & Ind. FMV in TIF Increment
112,959,756,091
3.25%
41.45%
4.50%
95,299
1,909
44.47%
26.58%
Table 4.2: Commercial and Industrial PINs in Cook County 3.2% of industrial and commercial PINs (aka “revenue producing PINs”) FMV has an incentive classification (4.55% when using PIN counts). Of the PINs that have incentive classification, 41.5% of the FMV is located within a TIF (43.9% when using PIN counts).
Table 4.3: Commercial PINs in Cook County 4.1% of commercial PINs FMV has an incentive classification (1.2% when using PIN counts). Of the commercial PINs that have incentive classification, 55.9% of the FMV is located within a TIF (40.5% when using PIN counts).
Table 4.4: Industrial PINs in Cook County 36.7% of industrial PINs FMV has an incentive classification (13.7% when using PIN counts). Of the Industrial PINs that have incentive classification, 35.7% of the FMV is located within a TIF (44% when using PIN counts).
Table 4.6: Untaxable AV in Cook County. Taxed AV represents the property value that was actually taxed by local taxing jurisdictions.
Code
table_cook %>%select(cty_fmv, cty_fmv_inTIF, cty_fmv_tif_increment, cty_fmv_incentive, cty_fmv_incent_inTIF, cty_fmv_incents_tif_increment) %>%flextable() %>%set_header_labels(cty_fmv ='Total FMV', cty_fmv_inTIF ='FMV in TIFs',cty_fmv_tif_increment ='TIF Increment FMV' ,cty_fmv_incentive ="FMV with Incent.Class.", cty_fmv_incent_inTIF ='FMV with Incent. Class. in TIFs')%>%FitFlextableToPage()
Total FMV
FMV in TIFs
TIF Increment FMV
FMV with Incent.Class.
FMV with Incent. Class. in TIFs
cty_fmv_incents_tif_increment
596,863,352,086
111,309,224,161
45,606,137,923
12,633,962,903
5,236,537,107
3,357,780,319
Table 4.7: FMV of properties with incentive classifications and TIF increment. Value in TIFs, value within the TIF that can be taxed by local taxing jurisdictions, value of properties that have reduced levels of assessments from incentive classifications, and the value that is both in a TIF and has a reduced LOA.
Taxed value is the amount of value that was actually taxed in order to pay for taxing agencies levies. It includes frozen EAV within an area + taxable EAV for residential properties net exemptions and abatements. It also includes the equalized assessed value of incentive properties at their current, lower assessment ratios. final_tax_to_dist is used to calculate the amount that was collected by local government agencies and then divided by the tax rate to calculate the amount of value that was taxed, or the taxable equalized assessed value (TEAV).
The Taxed Value, when converted to the Fair Market Value (FMV) represents the amount of value that was taxed out of the full FMV available in Cook County.
Untaxable EAV includes homeowner exemptions for 200 level properties, abatements for other property class types, EAV in the TIF increment, and EAV that has been reduced due to incentive classifications.
The Fair Market Value (FMV) is also called the Market Value for
Assessment Purposes and can be calculated from the av /
loa, or the Assessed Value divided by the Level of
Assessment. However, the values used for the level of assessment are an
approximation for incentive properties since we do not have the PIN
level assessment ratios.
Code
table_cook %>%ggplot() +geom_line(aes(x=year, y=fmv_group_growth, group = landuse_change, color = landuse_change)) +facet_wrap(~incent_change) +scale_x_continuous(#limits = c(2011, 2022), breaks =c(2011, 2018, 2022)) +labs(title="Growth from 2011 to 2022", subtitle ="Change in Incentive Use by Land Use Change", caption ="Indexed to 2011 FMV", x ="", y ="FMV Growth from 2011")
5 Municipality Level Stats
Ignore stats for these Municipalities. Simple rounding errors may cause bizarre results for rate changes & other calculations. These municipalities are dropped from summary tables in this website but are included in exported files.
Frankfort has 1 PIN in Cook County
East Dundee has 2
Homer Glen has 3
University Park has 4
Oak Brook, Deer Park, Deerfield, & Bensenville each have less than 75 PINs in Cook County, IL
table2 <- ptax_pins %>%filter(Alea_cat !="Land") %>%group_by(clean_name, incent_prop) %>%# projects can be counted twice if the project has incentive and normal commercial/industrial prop classes.summarize(pin_count =n(),project_count =n_distinct(keypin), av_adjusted=sum(ifelse(between(class, 600, 899), av*2.5, av)),av=sum(av, na.rm=TRUE),fmv=sum(fmv)) datatable(table2,rownames=FALSE,colnames =c('Municipality'='clean_name', 'Incentivized?'='incent_prop', 'PIN Count'='pin_count', 'Project Count'='project_count', 'Taxable AV'='av')) %>%formatCurrency(c('Taxable AV', 'av_adjusted'), digits =0)
Table 5.4: PINs and value summarized by if the property has an incentive class or not in a municipality. AV Adjusted is the amount of assessed value that could be taxed if the property were assessed at 25% instead of the lower level of assessment of approximately 10%.
5.2 Share of Commercial & Industrial FMV with Incentive Classification
Table 5.5: Municipalities with the largest share of Commercial and Industrial property with incentive classification. Uses tax year 2022 values obtained from PTAXSIM, and levels of assessment from CCAO’s Github. There are 27 municipalities that do not use incentives and have a majority of their taxable EAV within Cook County.
$15 Billion EAV is tax exempt due to homeowners exemptions. All incentive properties combined only have $4 billion EAV that is tax exempt (due to the decreased level of assessment which results in less AV, and therefore, EAV)
6.2.1 Estimates for Revenue Shifted to Non-Incentive Class Properties
Uses old current tax rate and multiplies it by the new taxbase.
Code
ptax_pins %>%filter(!clean_name %in%c("Frankfort", "Homer Glen", "Oak Brook", "East Dundee","University Park", "Bensenville", "Hinsdale", "Roselle","Deer Park", "Deerfield")) %>%filter(!agency_num %in% cross_county_lines &!is.na(clean_name) & clean_name!="Unincorporated" ) %>%summarize(# for homestead exemptionsmostnaive_forgone_tax_amt_exe =sum(tax_amt_exe), # more accurate but still uses current tax rate instead of recalculated tax rate:forgonerev_from_exemptions =sum(ifelse(class >=200& class <300, (((av*eq2022) - (taxed_av*eq2022))) * tax_code_rate/100, 0), na.rm=TRUE),# amount of EAV from taxing an additional 15% of the AV if incentive properties didn't exist# using current tax rate for each property at the tax code levelforgonerev_from_comind_incents =sum(ifelse(class >=600& class <900, (((taxed_av*eq2022)*0.25- (taxed_av*eq2022))) * tax_code_rate/100, 0), na.rm=TRUE),forgonerev_commerc_incents =sum(ifelse(class >=600& class <900& class %in% commercial_classes, (((taxed_av*eq2022)*0.25- (taxed_av*eq2022))) * tax_code_rate/100, 0), na.rm=TRUE),forgonerev_indust_incents =sum(ifelse(class >=600& class <900& class %in% industrial_classes, (((taxed_av*eq2022)*0.25- (taxed_av*eq2022))) * tax_code_rate/100, 0), na.rm=TRUE),# forgonerev_noTIFs = rate_current/100 * ,# TIF increment above the frozen EAVforgonerev_TIFs =sum(fmv_tif_increment * loa * eq2022*tax_code_rate/100, na.rm=TRUE),# if incentive properties had no tax value (i.e. owners left, or fully tax exempt)# also equal to the current amount collected from incentive propertiesforgonerev_vacant =sum(ifelse(class >=600& class <900, taxed_av*eq2022 * tax_code_rate/100, 0), na.rm =TRUE) )
6.3 Change in Composite Property Tax Rate Due to Incentives and other Policy Scenarios
Code
muni_ratechange <- ptax_pins %>%# left_join(muni_rate) %>%filter(!clean_name %in%c("Frankfort", "Homer Glen", "Oak Brook", "East Dundee", "University Park", "Bensenville", "Hinsdale", "Roselle", "Deer Park", "Deerfield")) %>%filter(!agency_num %in% cross_county_lines) %>%group_by(clean_name) %>%summarize(classgroup_PC =n(),# projects = n_distinct(both_ids), # mostly for industrial and commercial propertiespins_withincents =sum(ifelse(class >=600& class <900, 1,0)),fmv_incentive =sum(ifelse(class >=600& class <900, fmv, 0), na.rm =TRUE),#fmv_taxed = sum(taxed_fmv, na.rm=TRUE),fmv_incents_inTIFs =sum(ifelse(class >=600& class <900& final_tax_to_tif >0, fmv, 0), na.rm =TRUE),fmv_inTIF =sum(fmv_inTIF, na.rm=TRUE),fmv_tif_increment =sum(fmv_tif_increment, na.rm=TRUE),fmv_untaxable_value =sum(untaxable_value_fmv , na.rm=TRUE),fmv_exemptions =sum(all_exemptions/eq2022/loa, na.rm=TRUE),fmv_abatements =sum(exe_abate/eq2022/loa, na.rm=TRUE),zero_bill =sum(zero_bill, na.rm=TRUE),fmv_residential =sum(ifelse(class %in%c(200:399), fmv, 0), na.rm =TRUE),fmv_C2 =sum(ifelse(class %in%c(200:299), fmv, 0), na.rm =TRUE),fmv_industrial =sum(ifelse(class %in% industrial_classes, fmv, 0), na.rm =TRUE),fmv_commercial =sum(ifelse(class %in% commercial_classes, fmv, 0), na.rm =TRUE),current_rate_avg =mean(tax_code_rate),avg_C2_bill_noexe =mean(ifelse(between(class,200,299) & all_exemptions ==0, (final_tax_to_dist + final_tax_to_tif), NA), na.rm=TRUE),avg_C2_bill_withexe =mean(ifelse(between(class,200,299) & all_exemptions >0, (final_tax_to_dist + final_tax_to_tif), NA), na.rm=TRUE),av_taxed =sum(taxed_av, na.rm =TRUE),untaxable_value_av =sum(untaxable_value_av, na.rm=TRUE),av =sum(av),eav_taxed =sum(taxed_av*eq2022), eav_untaxable =sum(untaxable_value_eav, na.rm=TRUE),eav_max =sum(fmv*loa*eq2022, na.rm=TRUE),fmv =sum(fmv, na.rm=TRUE),pins_in_class =n(),all_exemptions =sum(all_exemptions), # in EAVabatements =sum(exe_abate), # in EAVeav_incents_inTIFs =sum(ifelse(class >=600& class <=900& in_tif ==1, eav, 0), na.rm =TRUE),loa =mean((loa*classgroup_PC ) /sum(classgroup_PC), na.rm=TRUE),final_tax_to_dist =sum(final_tax_to_dist),final_tax_to_tif =sum(final_tax_to_tif),eav =sum(eav),new_TEAV_noIncents =sum(ifelse(class >=600& class <900, (taxed_av*eq2022/loa)*0.25, taxed_av*eq2022), na.rm=TRUE),new_TEAV_noC6 =sum(ifelse( class >=600& class <700, (taxed_av*eq2022/loa)*0.25 , taxed_av*eq2022)),new_TEAV_noC7 =sum(ifelse(class >=700& class <800,(taxed_av*eq2022/loa)*0.25, taxed_av*eq2022)),new_TEAV_noC8 =sum(ifelse(class >=800& class <900, (taxed_av*eq2022/loa)*0.25, taxed_av*eq2022)),new_TEAV_vacant_noIncents =sum(ifelse(class >=600& class <900,0, taxed_av*eq2022)),new_TEAV_noExemps = eav_taxed + all_exemptions, # does not include abatementsnew_TEAV_noAbates = eav_taxed + abatements, # include only abatements, not other exemption types# amount of EAV from taxing an additional 15% of the AV if incentive properties didn't existforgone_EAV_incent =#class_group %in% incentive_majorclasses,#incent_prop == "Incentive", new_TEAV_noIncents - eav_taxed,# TIF increment above the frozen EAVforgone_TIF_EAV = fmv_tif_increment * loa * eq2022) %>%#cbind(table_cook) %>%mutate(# Absolute maximum TEAV: No Exemptions, no abatements, no TIFS, no Incentive properties# Commercial and industrial assessed at 25%TEAV_max = eav_taxed + all_exemptions + abatements + forgone_TIF_EAV + forgone_EAV_incent,# no exemptions or incentive classifications:TEAV_neither = eav_taxed + all_exemptions + forgone_EAV_incent,rate_noExe = final_tax_to_dist / new_TEAV_noExemps *100,rate_noAbate = final_tax_to_dist / new_TEAV_noAbates *100,rate_noInc = final_tax_to_dist / new_TEAV_noIncents *100,rate_neither = final_tax_to_dist / TEAV_neither *100, rate_noTIFs = final_tax_to_dist / (eav_taxed + forgone_TIF_EAV) *100,rate_vacant = final_tax_to_dist / new_TEAV_vacant_noIncents*100,rate_lowest = final_tax_to_dist / TEAV_max *100,# rate_noC6 = levy / new_TEAV_noC6 * 100,# rate_noC7 = levy / TEAV_noC7 * 100,# rate_noC8 = levy / TEAV_noC8 * 100,rate_current = final_tax_to_dist / eav_taxed *100,change_noInc = rate_current - rate_noInc,change_neither = rate_current - rate_neither,change_noTIF = rate_current - rate_noTIFs,change_noExe = rate_current - rate_noExe,change_vacant = rate_current - rate_vacant,change_lowest = rate_current - rate_lowest ) %>%mutate(across(contains("rate_"), round, digits =2))
6.4 Tables - Difference in Composite Tax Rates
Code
muni_ratechange_sliced <- muni_ratechange %>%select(clean_name, rate_current, rate_noInc, change_noInc) %>%arrange(desc(change_noInc) ) %>%mutate(across(c(rate_current, rate_noInc, change_noInc), round, digits=2)) %>%mutate(change_noInc =abs(round(change_noInc, digits =2)) ) %>%slice(c(1:5, 58:62, 115:119)) muni_ratechange_sliced %>%flextable() %>%border_remove() %>%hline_top() %>%hline(i =c(5,10)) %>%set_header_labels(clean_name ="Municipality", rate_current ="Current Comp.\nTax Rate", rate_noInc ="Tax Rate if No\nIncent. Class.",change_noInc ="Rate Change") %>%bold(i =8) %>%add_footer("There are 26 municipalities that do not use incentives and have a majority of their taxable EAV within Cook County.", top =FALSE) %>%set_table_properties( layout ="autofit")
Municipality
Current Comp. Tax Rate
Tax Rate if No Incent. Class.
Rate Change
Ford Heights
27.12
21.12
5.99
Phoenix
30.70
25.29
5.41
Matteson
18.50
14.04
4.46
North Lake
12.19
8.22
3.97
Markham
28.11
24.19
3.92
Orland Hills
11.42
11.15
0.28
Rolling Meadows
10.08
9.81
0.27
Countryside
8.44
8.20
0.24
Niles
8.05
7.81
0.24
Chicago Ridge
13.39
13.19
0.20
Stickney
13.13
13.13
0.00
Western Springs
8.76
8.76
0.00
Wilmette
7.35
7.35
0.00
Winnetka
7.46
7.46
0.00
Worth
14.12
14.12
0.00
Table 6.1: Composite Tax Rate Change from hypothetical scenario of taxing incentive property at 25% of their FMV instead of 10% of their FMV. There are 26 municipalities that do not use incentives and have a majority of their taxable EAV within Cook County.
Figure 6.2: Hypothetical change in composite tax rate if all value that currently receives incentive classification became assessed at 25% and exempt EAV from GHE became taxable.
Code
# as a dot graph ## # create order of dotsorder <- muni_ratechange %>%as_tibble() %>%filter(change_noInc >0) %>%arrange(rate_current) %>%select(clean_name, rate_current)# make dot graphmuni_ratechange %>%filter(change_noInc > .7) %>%select(clean_name, rate_current, rate_noInc) %>%distinct() %>%arrange(rate_current) %>%pivot_longer(c("rate_current", "rate_noInc"), names_to ="type", values_to ="tax_rate") %>%inner_join(order) %>%ggplot(aes(x = tax_rate, y=reorder(clean_name, rate_current)))+geom_line(aes(group = clean_name))+geom_point(aes(color=type), size=3, pch =21, color ="black" )+theme_minimal() +theme( legend.title =element_blank(),plot.title.position ="plot",plot.background =element_rect(fill='transparent', color=NA) #transparent plot bg )+scale_color_manual(#palette="Blues", labels =c("Current Rate", "No Incentives"), values =c("#A6CEE3", "#1F78B4" ))+labs(title ="Difference in Composite Tax Rate if Assessed at 25%",subtitle ="Ordered by Current Composite Tax Rate", x ="Composite Tax Rate (%)", y ="")
Figure 6.3: Change in tax rate if incentive properties were assessed at 25% of their FMV instead of their reduced level of assessment.
Code
# as a dot graph ## # create order of dotsorder <- muni_ratechange %>%as_tibble() %>%filter(change_noInc >0) %>%arrange(change_noInc) %>%select(clean_name, change_noInc) %>%distinct()# make dot graphmuni_ratechange %>%filter(change_noInc > .7) %>%select(clean_name, rate_current, rate_noInc, change_noInc) %>%distinct() %>%pivot_longer(c("rate_current", "rate_noInc"), names_to ="type", values_to ="tax_rate") %>%left_join(order) %>%filter(change_noInc >0 ) %>%ggplot(aes(x = tax_rate, y=reorder(clean_name, change_noInc)))+geom_line(aes(group = clean_name))+geom_point(aes(fill=type), size=3, pch =21, color ="black" )+theme_minimal() +theme( legend.title =element_blank(),plot.title.position ="plot",plot.background =element_rect(fill='transparent', color=NA) #transparent plot bg )+scale_fill_brewer(palette="Paired", labels =c("Incentives", "No Incentives"), direction =1)+labs(title ="Difference in Composite Tax Rate if Assessed at 25%",subtitle ="Ordered by Comp. Rate Change", x ="Composite Tax Rate (%)", y ="")
Figure 6.4: Change in Tax Rate from use of Incentives. Ordered by amount of change in the composite tax rate.
Code
# as a dot graph ## # create order of dotsorder <- muni_ratechange %>%as_tibble() %>%filter(change_noInc >0) %>%arrange(rate_current) %>%select(clean_name, rate_current) %>%distinct()# make dot graphmuni_ratechange %>%filter(change_noInc > .7) %>%select(clean_name, rate_current, rate_noInc, rate_neither, rate_vacant, rate_noExe) %>%distinct() %>%arrange(rate_current) %>%pivot_longer(c("rate_current", "rate_noInc", "rate_vacant", "rate_noExe"# ,# "rate_neither"), names_to ="type", values_to ="tax_rate") %>%inner_join(order) %>%ggplot(aes(x = tax_rate, y=reorder(clean_name, rate_current)))+geom_line(aes(group = clean_name))+geom_point(aes(fill=type), size=3, pch =21, color ="black" )+theme_minimal() +theme( legend.title =element_blank(),legend.position ="bottom",plot.title.position ="plot",plot.background =element_rect(fill='transparent', color=NA) #transparent plot bg )+scale_fill_brewer(palette ="RdGy",labels =c("Current Rate", # "No Exemps & LoA is 25%","No Exemptions", "No Incentives:\nLoA 25%","Incententive Classification\nLoA = 0%" ), direction =-1)+labs(title ="Composite Tax Rate Scenarios",subtitle ="Ordered by Current Composite Tax Rate", x ="Composite Tax Rate (%)", y ="")
Code
# as a dot graph ## # create order of dotsorder <- muni_ratechange %>%as_tibble() %>%filter(change_noInc >0) %>%arrange(rate_current) %>%select(clean_name, rate_current) %>%distinct()# make dot graphmuni_ratechange %>%filter(change_noInc > .7) %>%select(clean_name, rate_current, rate_noInc, rate_neither, rate_vacant, rate_noExe) %>%distinct() %>%arrange(rate_current) %>%pivot_longer(c("rate_current", "rate_noInc", "rate_vacant", # "rate_noExe"# ,# "rate_neither"), names_to ="type", values_to ="tax_rate") %>%inner_join(order) %>%ggplot(aes(x = tax_rate, y=reorder(clean_name, rate_current)))+geom_line(aes(group = clean_name))+geom_point(aes(fill=type), size=3, pch =21, color ="black" )+theme_minimal() +theme( legend.title =element_blank(),legend.position ="bottom",plot.title.position ="plot",plot.background =element_rect(fill='transparent', color=NA) #transparent plot bg )+scale_fill_brewer(palette ="Greys", direction =-1,labels =c("Current Rate", # "No Exemps & LoA is 25%",# "If no Exemptions", "No Incentive Classes: \nLoA = 25%","Incentive Classification\nLoA = 0%" ))+labs(title ="Composite Tax Rate Scenarios",subtitle ="Ordered by Current Composite Tax Rate", x ="Composite Tax Rate (%)", y ="")
Code
library(ggrepel)# make dot graphmuni_ratechange %>%filter( clean_name =="Markham"## | clean_name == "Matteson" ) %>%select(clean_name, rate_current, rate_noInc, rate_neither, rate_vacant, rate_noExe) %>%distinct() %>%arrange(rate_current) %>%pivot_longer(c("rate_current", "rate_noInc", "rate_vacant", "rate_noExe","rate_neither"), names_to ="type", values_to ="tax_rate") %>%inner_join(order) %>%ggplot(aes(x = tax_rate, y=reorder(clean_name, rate_current)))+geom_line(aes(group = clean_name))+geom_point(aes(fill=type), size=3, pch =21, color ="black" )+geom_text_repel(aes(x=tax_rate),hjust =0,vjust =-1,min.segment.length =Inf,# vjust = -1,# nudge_y = .3,# nudge_x = 3,size =3,angle =30,label =c("Current Rate", "If LoA 25%" ,"If Vacant" , "If no Exemps","No Exemps & LoA is 25%") )+theme_minimal() +theme( legend.title =element_blank(),plot.title.position ="plot",plot.background =element_rect(fill='transparent', color=NA),legend.position ="none" )+scale_fill_manual(values =c("#BDD7E7", "#6BAED6", "#3182BD", "#EFF3FF", "#08519C")) +# # # scale_fill_brewer(#palette = "Paired",# # labels = c("Current Rate",# # "If no GHE",# # "No GHE & LoA is 25%",# # "If LoA 25%" ,# # "If Vacant" ),# direction = 1)+scale_x_continuous(limits =c(17, 35)) +scale_y_discrete(expand =expand_scale(mult =c(.1, 1)) ,# limits = c("Markham")#, breaks = "Markham" ) +labs(# title = "Composite Tax Rate Scenarios", x ="Composite Tax Rate (%)", y ="")
7 Yearly Trends - FMV Growth since 2011
The file comm_ind_inmunis_timeseries_2006to2022.csvcomm_ind_PINs_2011to2022_timeseries.csv contains all PINs that had an incentive property class for at least 1 year. It includes all observations for a property during the years that it existed, even if it is not an incentive class property in that year.
Table 7.2: Aggregate FMV Growth by Incentive Classification. Changes Sometime includes properties that gained or lost an incentive classification. incent_status in tables below breaks up Changes Sometime into more detailed categories.
Table 7.5: Growth from 2011 to 2022 - Change in Land Use by Incentive Class Status for 2011 to 2022. Non-winsorized version of table used in Table X of report.
Code
df_2011_bal %>%ggplot() +geom_line(aes(x=year, fmv_group_growth, group = incent_status, color = incent_status)) +labs( title ="FMV Growth Since 2011 by Land Use",) +theme_bw() +facet_wrap(~landuse_change)
Figure 7.1: Includes the ‘Excluded’ Category
Code
df_2011_bal %>%filter(incent_status !="Excluded"& landuse_change !="Excluded"& landuse_change !="Exempt Sometime") %>%ggplot() +geom_line(aes(x=year, fmv_group_growth, group = incent_status, color = incent_status)) +labs( title ="FMV Growth Since 2011 by Land Use", caption ="PINs that did not exist during all years of the sample frame were excluded from the image (n=10,809)." ) +scale_color_brewer(direction =-1) +theme_bw() +facet_wrap(~landuse_change)
Figure 7.2: Excludes the ‘Excluded’ Category and ‘Exempt Sometime’ properties.
Code
df_2011_bal %>%mutate(year =as.factor(year)) %>%ggplot() +geom_line(aes(x=year, y=fmv_group_growth, group = landuse_change, color = landuse_change)) +theme_bw() +facet_wrap(~incent_status, nrow =1) +scale_x_discrete(breaks =c(2012, 2022)) +scale_y_continuous(breaks =c(-1, 0, 1, 2, 3, 4, 10), labels = scales::percent,) +scale_color_brewer(direction =-1) +labs(title="Growth from 2011 to 2022", subtitle ="Incentive Classification Status by Land Use Change",y ="FMV Growth since 2011", x =NULL,caption ="Values are indexed to 2011 FMV") +theme(legend.title =element_blank(), legend.position ="bottom")
Figure 7.3: Growth from 2011 to 2022. Faceted by if a PIN changed landuse during the sample period. Indexed to fair market value during 2011
Code
df_2011_bal %>%filter(landuse_change !="Excluded"& incent_status !="Excluded"& landuse_change !="Exempt Sometime") %>%mutate(year =as.factor(year)) %>%ggplot() +geom_line(aes(x=year, y=fmv_group_growth, group = landuse_change, color = landuse_change)) +theme_bw() +facet_wrap(~incent_status, nrow =1) +scale_x_discrete(breaks =c(2012, 2022)) +scale_y_continuous(breaks =c(-1, 0, 1, 2, 3, 4, 10), labels = scales::percent,) +labs(title="Growth from 2011 to 2022", subtitle ="Incentive Classification Status by Land Use Change",y ="FMV Growth since 2011", x =NULL,caption ="Values are indexed to 2011 FMV. Excludes PINs that were tax exempt some years or did not exist for all years between 2011 and 2022.") +theme(legend.title =element_blank(), legend.position ="bottom")
Figure 7.4: Aggregate FMV Growth from 2011 to 2022 Faceted by if a PIN incentive status during the sample period. Indexed to fair market value during 2011.